Interdisciplinary Program of Bioengineering, Seoul National University, Seoul 03080, Korea.
Department of Biomedical Engineering, College of Medicine, Seoul National University, Seoul 03080, Korea.
Sensors (Basel). 2017 Jun 23;17(7):1485. doi: 10.3390/s17071485.
Amyotrophic lateral sclerosis (ALS) patients whose voluntary muscles are paralyzed commonly communicate with the outside world using eye movement. There have been many efforts to support this method of communication by tracking or detecting eye movement. An electrooculogram (EOG), an electro-physiological signal, is generated by eye movements and can be measured with electrodes placed around the eye. In this study, we proposed a new practical electrode position on the forehead to measure EOG signals, and we developed a wearable forehead EOG measurement system for use in Human Computer/Machine interfaces (HCIs/HMIs). Four electrodes, including the ground electrode, were placed on the forehead. The two channels were arranged vertically and horizontally, sharing a positive electrode. Additionally, a real-time eye movement classification algorithm was developed based on the characteristics of the forehead EOG. Three applications were employed to evaluate the proposed system: a virtual keyboard using a modified Bremen BCI speller and an automatic sequential row-column scanner, and a drivable power wheelchair. The mean typing speeds of the modified Bremen brain-computer interface (BCI) speller and automatic row-column scanner were 10.81 and 7.74 letters per minute, and the mean classification accuracies were 91.25% and 95.12%, respectively. In the power wheelchair demonstration, the user drove the wheelchair through an 8-shape course without collision with obstacles.
肌萎缩侧索硬化症(ALS)患者的自主肌肉通常会瘫痪,他们通常通过眼球运动与外界进行交流。为了支持这种交流方式,已经有很多研究在通过跟踪或检测眼球运动来实现。眼电图(EOG)是一种电生理信号,由眼球运动产生,可以通过放置在眼睛周围的电极进行测量。在这项研究中,我们提出了一种新的实用电极位置,即在额头上测量 EOG 信号,并开发了一种可穿戴的额部 EOG 测量系统,用于人机接口(HCIs/HMIs)。四个电极,包括地电极,被放置在额头上。两个通道垂直和水平排列,共用一个正电极。此外,还基于额部 EOG 的特点开发了实时眼球运动分类算法。三个应用程序用于评估所提出的系统:一个使用改进的不来梅 BCI 拼字游戏和自动顺序行-列扫描器的虚拟键盘,以及一个可驾驶的动力轮椅。改良的不来梅脑机接口(BCI)拼字游戏和自动行-列扫描器的平均输入速度分别为每分钟 10.81 和 7.74 个字母,平均分类准确率分别为 91.25%和 95.12%。在动力轮椅演示中,用户无需与障碍物碰撞即可通过 8 字形路线驾驶轮椅。